Real-Time Stock Trend Prediction via Sentiment Analysis of News Article

Sanmoy Paul, S. Vishnoi
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引用次数: 1

Abstract

The stock market is volatile and volatility occurs in clusters, price fluctuations based on sentiment and news reports are common. A trader uses a wide variety of publicly available information to forecast the marketing decision. This paper proposes an advice to traders for stock trading using sentimental analysis of publically available news reports. It is based on a hypothesis, that news articles have an impact on the stock market, with this hypothesis we study the relationship between news and stock trend and also proved that negative news has a persistent effect on the stock market. In order to prove this assumption semi-supervised learning technique is being used to build the final model of news classification. This research shows that SVM with TF-IDF as feature performs well in further analysis. The accuracy of the prediction model is more than 90% having 52% correlation with the return label of a stock. This paper also proposes a real-time system which fetches news of any company on a real-time basis and displays its top five news and also predicts the adjusted close price of the next seven days. Keywords: Text Mining, Human Sentiments, KNN, Random Forest, Multinomial Naive Bayes, linear SVM, News.
基于新闻文章情绪分析的实时股票走势预测
股票市场波动很大,而且波动集中发生,基于情绪和新闻报道的价格波动很常见。交易者使用各种各样的公开信息来预测营销决策。本文通过对公开新闻报道的情感分析,对交易者进行股票交易提出了建议。本文基于新闻文章对股票市场产生影响的假设,通过这一假设,我们研究了新闻与股票走势之间的关系,并证明了负面新闻对股票市场的持续影响。为了证明这一假设,利用半监督学习技术构建新闻分类的最终模型。研究表明,以TF-IDF为特征的SVM在进一步分析中表现良好。预测模型与股票收益标签的相关性为52%,预测准确率达90%以上。本文还提出了一个实时系统,该系统可以实时获取任何公司的新闻,并显示其排名前五的新闻,并预测未来七天的调整后收盘价。关键词:文本挖掘,人类情感,KNN,随机森林,多项式朴素贝叶斯,线性支持向量机,新闻
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